Transforming hyperspectral images into chemical maps: a novel End‐to‐End Deep Learning approach

dc.contributor.author
Engstrøm, Ole-Christian Galbo
dc.contributor.author
Albano-Gaglio, Michela
dc.contributor.author
Dreier, Erik Schou
dc.contributor.author
Bouzembrak, Yamine
dc.contributor.author
Font i Furnols, Maria
dc.contributor.author
Mishra, Puneet
dc.contributor.author
Pedersen, Kim Steenstrup
dc.contributor.other
Indústries Alimentàries
dc.date.accessioned
2025-10-23T05:28:11Z
dc.date.available
2025-10-23T05:28:11Z
dc.date.issued
2025-07-16
dc.identifier.citation
Engstrøm, Ole-Christian Galbo, Michela Albano‐Gaglio, Erik Schou Dreier, Yamine Bouzembrak, Maria Font‐i‐Furnols, Puneet Mishra, and Kim Steenstrup Pedersen. 2025. “Transforming hyperspectral images into chemical maps: a novel End‐to‐End Deep Learning approach”. Journal of Chemometrics, 39(8): e70041. doi:10.1002/cem.70041.
dc.identifier.issn
0886-9383
dc.identifier.uri
https://hdl.handle.net/20.500.12327/4790
dc.description.abstract
Current approaches to chemical map generation from hyperspectral images are based on models such as partial least squares (PLS) regression, generating pixel-wise predictions that do not consider spatial context and suffer from a high degree of noise. This study proposes an end-to-end deep learning approach using a modified version of U-Net and a custom loss function to directly obtain chemical maps from hyperspectral images, skipping all intermediate steps required for traditional pixel-wise analysis. The U-Net is compared with the traditional PLS regression on a real dataset of pork belly samples with associated mean fat reference values. The U-Net obtains a test set root mean squared error of between 9% and 13% lower than that of PLS regression on the task of mean fat prediction. At the same time, U-Net generates fine detail chemical maps where 99.91% of the variance is spatially correlated. Conversely, only 2.53% of the variance in the PLS-generated chemical maps is spatially correlated, indicating that each pixel-wise prediction is largely independent of neighboring pixels. Additionally, while the PLS-generated chemical maps contain predictions far beyond the physically possible range of 0%–100%, U-Net learns to stay inside this range. Thus, the findings of this study indicate that U-Net is superior to PLS for chemical map generation.
dc.description.sponsorship
This work was supported by The Innovation Fund Denmark and FOSS Analytical A/S (grant number 1044-00108B); FEDER and MICIU/AEI/10.13039/501100011033/ (grant number RTI2018-096993-B-I00, 2019–2022); and the Spanish National Institute of Agricultural Research (INIA) (grant number PRE2019-089669, 2020–2024).
dc.format.extent
17
dc.language.iso
eng
dc.publisher
Wiley
dc.relation.ispartof
Journal of Chemometrics
dc.rights
Attribution 4.0 International
dc.rights.uri
http://creativecommons.org/licenses/by/4.0/
dc.title
Transforming hyperspectral images into chemical maps: a novel End‐to‐End Deep Learning approach
dc.type
info:eu-repo/semantics/article
dc.subject.udc
663/664
dc.description.version
info:eu-repo/semantics/publishedVersion
dc.embargo.terms
cap
dc.relation.projectID
MICIU/Programa Estatal de I+D+I orientada a los retos de la sociedad/RTI2018-096993-B-I00/ES/CLASIFICACION Y EVALUACION DE LA CALIDAD GLOBAL DE LA PANCETA DE CERDO MEDIANTE TECNOLOGIAS NO DESTRUCTIVAS Y PERCEPCION POR PARTE DE LOS CONSUMIDORES/
dc.identifier.doi
https://doi.org/10.1002/cem.70041
dc.rights.accessLevel
info:eu-repo/semantics/openAccess
dc.contributor.group
Qualitat i Tecnologia Alimentària


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